Computer Vision CS 776 Spring 2014 Miscellaneous Review Prof. Alex Berg (Slide credits to many folks on individual slides)

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Presentation transcript:

Computer Vision CS 776 Spring 2014 Miscellaneous Review Prof. Alex Berg (Slide credits to many folks on individual slides)

Quizlette Show (and explain) an example of a material that looks different colors under different lights.

Getting the blues to catch flies…

More Reading Pyramid Match Kernel from Kristen Grauman and collaborators~2005-7: Earth Mover’s Distance, Yossi Rubner and collaborators ~ : Connection between Mallow’s Distance and Earth Mover’s Distance Elizaveta Levina and collaborators~ 2001: